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A hybrid domain approach to reduce streak artifacts of sparse view CT image via convolutional neural network

机译:一种混合域方法,以通过卷积神经网络减少稀疏视图CT图像的条纹伪影

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In this study, we propose a method to reduce streak artifacts of sparse view CT images via convolutional neural network (CNN). The main idea of the proposed method is to utilize both image and sinogram domain data for CNN training. To generate datasets, projection data were acquired from 512 (128) views using Siddon's ray-driven algorithm, and full (sparse) view CT images were reconstructed by filtered back projection with a Ram-Lak filter. We first trained U-net based CNN_img, which was designed to reduce the streak artifacts of sparse view CT in image domain. Then, the output images of CNN_img were used as prior images to conduct pseudo full view sinogram. Before upsampling, sparse view sinogram was normalized by the prior images, and then linear interpolation was employed to estimate the missing view data compared to full view sinogram. The upsampled data were denormalized using prior images. To reduce the residual errors in pseudo full view sinogram data, we trained CNN_hybrid with residual encoder-decoder CNN, which is known to be effective in reducing the residual errors while preserving structural details. In order to increase the learning efficiency, the dynamic range of the pseudo full view sinogram data was converted via exponential function. The results show that the CNN_hybrid provides better performance in streak artifacts reduction than CNNimg, which is also confirmed by quantitative assessment.
机译:在这项研究中,我们提出了一种方法来减少通过卷积神经网络(CNN)的稀疏视图CT图像的条纹伪影。所提出的方法的主要思想是利用图像和铭顶域数据进行CNN训练。为了生成数据集,使用SIDDON的光线驱动算法从512(128)视图获取投影数据,并且通过用RAM-LAK滤波器过滤后投影来重建完整(稀疏)视图CT图像。我们首先培训了基于U-Net的CNN_IMG,旨在减少图像域中的稀疏视图CT的条纹伪像。然后,使用CNN_IMG的输出图像作为先前的图像来进行伪完整视图SONOGRAMGROM。在上采样之前,通过先前的图像归一化稀疏视图SONOGRAM,然后采用线性插值来估计与全视图SINOGRAM相比的缺失视图数据。使用先验图像使得ups采样的数据是二制化的。为了减少伪全视图中图数据中的残余误差,我们用残留的编码器解码器CNN培训了CNN_HYBRID,已知是有效地减少在保持结构细节的同时降低残余误差。为了提高学习效率,通过指数函数转换伪全视图数据的动态范围。结果表明,CNN_HYBRID在比CNNIMG减少的条纹伪影中提供了更好的性能,这也通过定量评估证实。

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